Agnostic Physics-Driven Deep Learning

05/30/2022
by   Benjamin Scellier, et al.
0

This work establishes that a physical system can perform statistical learning without gradient computations, via an Agnostic Equilibrium Propagation (Aeqprop) procedure that combines energy minimization, homeostatic control, and nudging towards the correct response. In Aeqprop, the specifics of the system do not have to be known: the procedure is based only on external manipulations, and produces a stochastic gradient descent without explicit gradient computations. Thanks to nudging, the system performs a true, order-one gradient step for each training sample, in contrast with order-zero methods like reinforcement or evolutionary strategies, which rely on trial and error. This procedure considerably widens the range of potential hardware for statistical learning to any system with enough controllable parameters, even if the details of the system are poorly known. Aeqprop also establishes that in natural (bio)physical systems, genuine gradient-based statistical learning may result from generic, relatively simple mechanisms, without backpropagation and its requirement for analytic knowledge of partial derivatives.

READ FULL TEXT
research
03/05/2018

Energy-entropy competition and the effectiveness of stochastic gradient descent in machine learning

Finding parameters that minimise a loss function is at the core of many ...
research
02/25/2020

Statistical Adaptive Stochastic Gradient Methods

We propose a statistical adaptive procedure called SALSA for automatical...
research
05/06/2022

Beyond backpropagation: implicit gradients for bilevel optimization

This paper reviews gradient-based techniques to solve bilevel optimizati...
research
08/23/2023

Layer-wise Feedback Propagation

In this paper, we present Layer-wise Feedback Propagation (LFP), a novel...
research
10/01/2020

Agnostic Learning of Halfspaces with Gradient Descent via Soft Margins

We analyze the properties of gradient descent on convex surrogates for t...
research
08/10/2022

Frequency propagation: Multi-mechanism learning in nonlinear physical networks

We introduce frequency propagation, a learning algorithm for nonlinear p...
research
07/27/2020

Stochastic Gradient Descent applied to Least Squares regularizes in Sobolev spaces

We study the behavior of stochastic gradient descent applied to Ax -b _2...

Please sign up or login with your details

Forgot password? Click here to reset